Publication | Open Access
A Mobile Outdoor Augmented Reality Method Combining Deep Learning Object Detection and Spatial Relationships for Geovisualization
64
Citations
62
References
2017
Year
Convolutional Neural NetworkEngineeringMachine LearningHuman Pose Estimation3D Pose EstimationWearable TechnologyLocalizationTouch GesturesImage AnalysisVirtual RealityMachine VisionSpatial RelationshipsGeospatial InformationObject DetectionMobile ComputingDeep LearningAugmented Reality3D Object RecognitionGesture RecognitionComputer VisionObject RecognitionScene UnderstandingBusinessStable Geovisualization Results
The purpose of this study was to develop a robust, fast and markerless mobile augmented reality method for registration, geovisualization and interaction in uncontrolled outdoor environments. We propose a lightweight deep-learning-based object detection approach for mobile or embedded devices; the vision-based detection results of this approach are combined with spatial relationships by means of the host device's built-in Global Positioning System receiver, Inertial Measurement Unit and magnetometer. Virtual objects generated based on geospatial information are precisely registered in the real world, and an interaction method based on touch gestures is implemented. The entire method is independent of the network to ensure robustness to poor signal conditions. A prototype system was developed and tested on the Wuhan University campus to evaluate the method and validate its results. The findings demonstrate that our method achieves a high detection accuracy, stable geovisualization results and interaction.
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